We introduce EINNs, a framework crafted for epidemic forecasting that builds upon the theoretical grounds provided by mechanistic models as well as the data-driven expressibility afforded by AI models, and their capabilities to ingest heterogeneous information. Although neural forecasting models have been successful in multiple tasks, predictions well-correlated with epidemic trends and long-term predictions remain open challenges. Epidemiological ODE models contain mechanisms that can guide us in these two tasks; however, they have limited capability of ingesting data sources and modeling composite signals. Thus, we propose to leverage work in physics-informed neural networks to learn latent epidemic dynamics and transfer relevant knowledg...
With the recent COVID-19 outbreak, we have assisted to the development of new epidemic models or the...
Epidemic is a rapid and wide spread of infectious disease threatening many lives and economy damages...
Spreading processes are ubiquitous in nature and societies, e.g. spreading of diseases and computer ...
Why can’t neural networks (NN) forecast better? In the major super-forecasting competitions, NN have...
This is the first release of the PINN-COVID code for our paper "Identifiability and predictability o...
Influenza-like illness (ILI) is among the most common diseases worldwide. Producing timely, well-inf...
This work is the first to take advantage of recurrent neural networks to predict influenza-like illn...
Objectives: The COVID-19 pandemic is considered a major threat to global public health. The aim of o...
The COVID-19 pandemic has caused a global crisis with 47,209,305 confirmed cases and 1,209,505 confi...
Infectious disease forecasting has been a key focus in the recent past owing to the COVID-19 pandemi...
We propose to use Physics-Informed Neural Networks (PINNs) to track the temporal changes in the stat...
Over the past several years, there has been a notable shift in the international public health arena...
In this bachelor thesis, different models for predicting the influenza virus are examined in more d...
Predictive modelling of infectious diseases is very important in planning public health policies, pa...
Predicting future outbreaks of disease is important and helps planning Manage appropriate case reduc...
With the recent COVID-19 outbreak, we have assisted to the development of new epidemic models or the...
Epidemic is a rapid and wide spread of infectious disease threatening many lives and economy damages...
Spreading processes are ubiquitous in nature and societies, e.g. spreading of diseases and computer ...
Why can’t neural networks (NN) forecast better? In the major super-forecasting competitions, NN have...
This is the first release of the PINN-COVID code for our paper "Identifiability and predictability o...
Influenza-like illness (ILI) is among the most common diseases worldwide. Producing timely, well-inf...
This work is the first to take advantage of recurrent neural networks to predict influenza-like illn...
Objectives: The COVID-19 pandemic is considered a major threat to global public health. The aim of o...
The COVID-19 pandemic has caused a global crisis with 47,209,305 confirmed cases and 1,209,505 confi...
Infectious disease forecasting has been a key focus in the recent past owing to the COVID-19 pandemi...
We propose to use Physics-Informed Neural Networks (PINNs) to track the temporal changes in the stat...
Over the past several years, there has been a notable shift in the international public health arena...
In this bachelor thesis, different models for predicting the influenza virus are examined in more d...
Predictive modelling of infectious diseases is very important in planning public health policies, pa...
Predicting future outbreaks of disease is important and helps planning Manage appropriate case reduc...
With the recent COVID-19 outbreak, we have assisted to the development of new epidemic models or the...
Epidemic is a rapid and wide spread of infectious disease threatening many lives and economy damages...
Spreading processes are ubiquitous in nature and societies, e.g. spreading of diseases and computer ...